BMC Infectious Diseases (May 2018)

Prediction of mortality in severe dengue cases

  • Saiful Safuan Md-Sani,
  • Julina Md-Noor,
  • Winn-Hui Han,
  • Syang-Pyang Gan,
  • Nor-Salina Rani,
  • Hui-Loo Tan,
  • Kanimoli Rathakrishnan,
  • Mohd Azizuddin A-Shariffuddin,
  • Marzilawati Abd-Rahman

DOI
https://doi.org/10.1186/s12879-018-3141-6
Journal volume & issue
Vol. 18, no. 1
pp. 1 – 9

Abstract

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Abstract Background Increasing incidence of dengue cases in Malaysia over the last few years has been paralleled by increased deaths. Mortality prediction models will therefore be useful in clinical management. The aim of this study is to identify factors at diagnosis of severe dengue that predicts mortality and assess predictive models based on these identified factors. Method This is a retrospective cohort study of confirmed severe dengue patients that were admitted in 2014 to Hospital Kuala Lumpur. Data on baseline characteristics, clinical parameters, and laboratory findings at diagnosis of severe dengue were collected. The outcome of interest is death among patients diagnosed with severe dengue. Results There were 199 patients with severe dengue included in the study. Multivariate analysis found lethargy, OR 3.84 (95% CI 1.23–12.03); bleeding, OR 8.88 (95% CI 2.91–27.15); pulse rate, OR 1.04 (95% CI 1.01–1.07); serum bicarbonate, OR 0.79 (95% CI 0.70–0.89) and serum lactate OR 1.27 (95% CI 1.09–1.47), to be statistically significant predictors of death. The regression equation to our model with the highest AUROC, 83.5 (95% CI 72.4–94.6), is: Log odds of death amongst severe dengue cases = − 1.021 - 0.220(Serum bicarbonate) + 0.001(ALT) + 0.067(Age) - 0.190(Gender). Conclusion This study showed that a large proportion of severe dengue occurred early, whilst patients were still febrile. The best prediction model to predict death at recognition of severe dengue is a model that incorporates serum bicarbonate and ALT levels.

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